Özel Duygan Birge D, Hadadi Noushin, Babu Ambrin Farizah, Seyfried Markus, van der Meer Jan R
Department of Fundamental Microbiology, University of Lausanne, 1015, Lausanne, Switzerland.
Department of Cell Physiology and Metabolism, Faculty of Medicine, University of Geneva, CH-1211, Geneva, Switzerland.
Commun Biol. 2020 Jul 15;3(1):379. doi: 10.1038/s42003-020-1106-y.
The study of complex microbial communities typically entails high-throughput sequencing and downstream bioinformatics analyses. Here we expand and accelerate microbiota analysis by enabling cell type diversity quantification from multidimensional flow cytometry data using a supervised machine learning algorithm of standard cell type recognition (CellCognize). As a proof-of-concept, we trained neural networks with 32 microbial cell and bead standards. The resulting classifiers were extensively validated in silico on known microbiota, showing on average 80% prediction accuracy. Furthermore, the classifiers could detect shifts in microbial communities of unknown composition upon chemical amendment, comparable to results from 16S-rRNA-amplicon analysis. CellCognize was also able to quantify population growth and estimate total community biomass productivity, providing estimates similar to those from C-substrate incorporation. CellCognize complements current sequencing-based methods by enabling rapid routine cell diversity analysis. The pipeline is suitable to optimize cell recognition for recurring microbiota types, such as in human health or engineered systems.
对复杂微生物群落的研究通常需要高通量测序和下游生物信息学分析。在这里,我们通过使用标准细胞类型识别的监督机器学习算法(CellCognize),从多维流式细胞术数据中实现细胞类型多样性量化,从而扩展并加速微生物群分析。作为概念验证,我们用32种微生物细胞和珠子标准物训练神经网络。所得分类器在计算机上对已知微生物群进行了广泛验证,平均预测准确率达80%。此外,这些分类器能够检测化学修正后未知组成的微生物群落的变化,与16S-rRNA扩增子分析结果相当。CellCognize还能够量化种群增长并估计总群落生物量生产力,提供与C底物掺入法相似的估计值。CellCognize通过实现快速常规细胞多样性分析,对当前基于测序的方法起到补充作用。该流程适用于优化对反复出现的微生物群类型的细胞识别,如在人类健康或工程系统中。